3D and 4D inversion for rock and fluid properties using deep learning
Abstract
This thesis focuses on estimating rock and fluid properties from the perspective of 3D and 4D
seismic inversion. I developed two techniques that enable seamless integration of 3D and 4D
seismic data. The first technique emphasises the estimation of porosity, Vclay, and hydrocarbon
saturation directly from 3D seismic data using deep learning. Additionally, I propose an
approach to enhance the lateral continuity of these estimated petrophysical properties. The
products from this first technique are subsequently integrated into the 4D domain, leading to
the development of the second technique that enables the inversion for reservoir pressure and
saturation changes from 4D seismic data using deep learning. Both techniques involve the use
of synthetic training datasets for network training, where the detailed processes for building
realistic training datasets are presented. The first technique was tested across four fields with
diverse deposition environments, covering meandering fluvial systems, fluvial estuaries,
deepwater settings, and carbonate platforms. The second technique was applied to the
meandering fluvial field with available 4D seismic data. This technique successfully
distinguishes pressure effects from saturation-related effects in the 4D seismic response. It also
highlights the importance of incorporating fluid flow information into the training dataset,
enabling the network to capture the relationship between the superimposed effects of dynamic
property changes and the corresponding 4D seismic response. Finally, I present a summary of
the cost-benefit analysis of these developed techniques, demonstrating their ability to
accelerate the inversion process in terms of turnaround time while providing robust solutions
when applied to field applications.